Skip to search form
Skip to main content
Skip to account menu
Semantic Scholar
Semantic Scholar's Logo
Search 218,182,843 papers from all fields of science
Search
Sign In
Create Free Account
Windows Task Scheduler
Known as:
AT
, Task Scheduler
, At (Windows)
Expand
Task Scheduler is a component of Microsoft Windows that provides the ability to schedule the launch of programs or scripts at pre-defined times or…
Expand
Wikipedia
(opens in a new tab)
Create Alert
Alert
Related topics
Related topics
16 relations
Active Directory
BIOS
Binary file
Cron
Expand
Papers overview
Semantic Scholar uses AI to extract papers important to this topic.
Highly Cited
2018
Highly Cited
2018
A versatile data-intensive computing platform for information retrieval from big geospatial data
P. Soille
,
A. Burger
,
+4 authors
V. Vasilev
Future generations computer systems
2018
Corpus ID: 402066
Review
2015
Review
2015
CoBots: Robust Symbiotic Autonomous Mobile Service Robots
M. Veloso
,
Joydeep Biswas
,
B. Coltin
,
Stephanie Rosenthal
International Joint Conference on Artificial…
2015
Corpus ID: 9653894
We research and develop autonomous mobile service robots as Collaborative Robots, i.e., CoBots. For the last three years, our…
Expand
Highly Cited
2015
Highly Cited
2015
Scaling Up Concurrent Main-Memory Column-Store Scans: Towards Adaptive NUMA-aware Data and Task Placement
Iraklis Psaroudakis
,
Tobias Scheuer
,
Norman May
,
Abdelkader Sellami
,
A. Ailamaki
Proceedings of the VLDB Endowment
2015
Corpus ID: 18958490
Main-memory column-stores are called to efficiently use modern non-uniform memory access (NUMA) architectures to service…
Expand
2013
2013
PIKACHU: How to Rebalance Load in Optimizing MapReduce On Heterogeneous Clusters
Rohan Gandhi
,
Di Xie
,
Y. C. Hu
USENIX Annual Technical Conference
2013
Corpus ID: 16316713
For power, cost, and pricing reasons, datacenters are evolving towards heterogeneous hardware. However, MapReduce implementations…
Expand
Highly Cited
2011
Highly Cited
2011
Locality-Aware Reduce Task Scheduling for MapReduce
Mohammad Hammoud
,
M. Sakr
IEEE Third International Conference on Cloud…
2011
Corpus ID: 10187541
MapReduce offers a promising programming model for big data processing. Inspired by functional languages, MapReduce allows…
Expand
Highly Cited
2010
Highly Cited
2010
GA-Based Task Scheduler for the Cloud Computing Systems
Yujia Ge
,
Guiyi Wei
International Conference on Web Information…
2010
Corpus ID: 15441464
Task scheduling problems are of paramount importance which relate to the efficiency of the whole cloud computing facilities. In…
Expand
Highly Cited
2010
Highly Cited
2010
Performance-driven task co-scheduling for MapReduce environments
Jordà Polo
,
David Carrera
,
Y. Becerra
,
M. Steinder
,
Ian Whalley
IEEE/IFIP Network Operations and Management…
2010
Corpus ID: 6537115
MapReduce is a data-driven programming model proposed by Google in 2004 which is especially well suited for distributed data…
Expand
Highly Cited
2007
Highly Cited
2007
Load prediction using hybrid model for computational grid
Yongwei Wu
,
Yulai Yuan
,
Guangwen Yang
,
Weimin Zheng
IEEE/ACM International Conference on Grid…
2007
Corpus ID: 8014399
Due to the dynamic nature of grid environments, schedule algorithms always need assistance of a long-time-ahead load prediction…
Expand
2005
2005
Energy-aware wireless systems with adaptive power-fidelity tradeoffs
V. Raghunathan
,
Cristiano Pereira
,
M. Srivastava
,
Rajesh K. Gupta
IEEE Transactions on Very Large Scale Integration…
2005
Corpus ID: 1438320
Wireless networked embedded systems, such as multimedia terminals, sensor nodes, etc., present a rich domain for making energy…
Expand
Highly Cited
2001
Highly Cited
2001
A framework for reconfigurable computing: task scheduling and context management
R. Maestre
,
F. Kurdahi
,
Milagros Fernández
,
R. Hermida
,
N. Bagherzadeh
,
H. Singh
IEEE Transactions on Very Large Scale Integration…
2001
Corpus ID: 7073491
Dynamically reconfigurable architectures are emerging as a viable design alternative to implement a wide range of computationally…
Expand
By clicking accept or continuing to use the site, you agree to the terms outlined in our
Privacy Policy
(opens in a new tab)
,
Terms of Service
(opens in a new tab)
, and
Dataset License
(opens in a new tab)
ACCEPT & CONTINUE